基于视觉线索概率积分的道路位置估计

V. Popescu, R. Danescu, S. Nedevschi
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引用次数: 10

摘要

本文利用视频序列处理后的信息,解决了在多车道道路上寻找主车辆横向位置的问题。车道识别的一个非常重要的线索是当前车道边界的类别。本文提出了一种可靠的车道边界类型识别方法,该方法基于车道边界灰度谱的频率分析,假设当前车道已经被检测到。将车道边界信息与障碍物信息相结合,通过贝叶斯网络逐帧输出车辆在道路每条车道上定位的概率。概率结果将通过粒子滤波器在整个序列中传播。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On-road position estimation by probabilistic integration of visual cues
This paper addresses the problem of finding the host vehicle's lateral position on a multi-lane road, using information obtained by processing video sequences. A very important cue for lane identification is the class of the boundaries of the current lane. This paper presents a reliable solution for lane boundary type identification, based on frequency analysis of the gray level profile of these boundaries, assuming that the current lane is already detected. The lane boundary information is combined with the obstacle information, through a Bayesian Network which will output, frame by frame, the probability of the vehicle to be positioned on each lane of the road. The probability result will be propagated throughout the sequence by a Particle Filter.
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